What You Need to Know about Machine Learning
By Gabriel A. Canepa
This eBook offers you the perfect place to lay the foundation for your work in the world of Machine Learning, providing the basic understanding, knowledge, and skills that you can build on with experience and time.
What you will learn:
Click here to get the free eBook
HTML5 Graphing and Data Visualization Cookbook
By Ben Fhala
Get a complete grounding in the exciting visual world of Canvas and HTML5 using this recipe-packed cookbook. Learn to create charts and graphs, draw complex shapes, add interactivity, work with Google maps, and much more.
What you will learn:
Click here to get the free eBook
Building Machine Learning Systems with Python
By Willi Richert, Luis Pedro Coelho
Expand your knowledge of Python data with the power of machine learning with this eBook. Find out how to use cutting-edge Python machine learning algorithms to reveal the hidden insight in your data. You'll learn how to build machine learning for text, images, and sounds with free open-source tools and libraries.
What you will learn:
Click here to get the free eBook
Practical Data Analysis
By Hector Cuesta
This eBook is designed to give you the knowledge you need to start succeeding in data analysis. Discover the tools, techniques and algorithms you need to transform your data into insight.
What you will learn:
Click here to get the free eBook
Machine Learning with R
By Brett Lantz
Tech consultants and BI experts will charge a lot to help you turn data into actionable insights. This eBook will help you do just that - without costing a thing. Your business can't afford to waste its data - and you shouldn't waste this opportunity to kickstart your skillset.
What you will learn:
Click here to get the free eBook
Comment
thank you for the resource materials
Thanks, Excellent eBooks
Posted 12 April 2021
© 2021 TechTarget, Inc.
Powered by
Badges | Report an Issue | Privacy Policy | Terms of Service
Most Popular Content on DSC
To not miss this type of content in the future, subscribe to our newsletter.
Other popular resources
Archives: 2008-2014 | 2015-2016 | 2017-2019 | Book 1 | Book 2 | More
Most popular articles
You need to be a member of Data Science Central to add comments!
Join Data Science Central